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  • [Med Phys. ] Differentiation of fat-poor angiomyolipoma from clear cell renal cell carcinoma in contrast-enhanced MDCT images using quantitative feature classification.

    서울여대/ 이한상, 정대철*, 홍헬렌*

  • 출처
    Med Phys.
  • 등재일
    2017 Jul
  • 저널이슈번호
    44(7):3604-3614. doi: 10.1002/mp.12258. Epub 2017 Jun 9.
  • 내용

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    Abstract

    PURPOSE: 

    To develop a computer-aided classification system to differentiate benign fat-poor angiomyolipoma (fp-AML) from malignant clear cell renal cell carcinoma (ccRCC) using quantitative feature classification on histogram and texture patterns from contrast-enhanced multidetector computer tomography (CE MDCT) images.

     

    METHODS: 

    A dataset including 50 CE MDCT images of 25 fp-AML and 25 ccRCC patients was used. From these images, the tumors were manually segmented by an expert radiologist to define the regions of interest (ROI). A feature classification system was proposed for separating two types of renal masses, using histogram and texture features and machine learning classifiers. First, 64 quantitative image features, including histogram features based on basic histogram characteristics, percentages of pixels above the thresholds, percentile intensities, and texture features based on gray-level co-occurrence matrices (GLCM), gray-level run-length matrices (GLRLM), and local binary patterns (LBP), were extracted from each ROI. A number of feature selection methods including stepwise feature selection (SFS), ReliefF selection, and principal component analysis (PCA) transformation, were applied to select the group of useful features. Finally, the feature classifiers including logistic regression, k nearest neighbors (kNN), support vector machine (SVM), and random forest (RF), were trained on the selected features to differentiate benign fp-AML from malignant ccRCC. Each combination of feature selection and classification methods was tested using a fivefold cross-validation method and evaluated using accuracy, sensitivity, specificity, positive predictive values (PPV), negative predictive values (NPV), and area under receiver operating characteristic curve (AUC).

     

    RESULTS: 

    In feature selection, the features commonly selected by different feature selection methods were assessed. From three selection methods, three histogram features including maximum intensity, percentages of pixels above the thresholds 210 and 230, and one texture feature of GLCM sum entropy, were jointly selected as key features to distinguish two types of renal masses. In feature classification, kNN and SVM classifiers with ReliefF feature selection demonstrated the best performance among other choices of feature selection and classification methods, where ReliefF+kNN and ReliefF+SVM achieved the accuracy of 72.3 ± 4.6% and 72.1 ± 4.2%, respectively.

     

    CONCLUSIONS: 

    We propose a computer-aided classification system for distinguishing fp-AML from ccRCC using machine learning classifiers with quantitative texture features. Our contribution is to investigate the proper combination between the quantitative features and classification systems on the CE MDCT images. In experiments, it can be demonstrated that (a) the features based on histogram characteristics on bright intensity region and texture patterns on inhomogeneity inside masses were selected as key features to classify fp-AML and ccRCC, and (b) the proper combination of feature selection and classification methods achieved high performance in differentiating benign from malignant masses. The proposed classification system can be used to assess the useful features associated with the malignancy for renal masses in CE MDCT images.​ 

     

    Author information

    Lee HS1, Hong H2, Jung DC3, Park S3, Kim J1.

    1School of Electrical Engineering, Korea Advanced Institute of Science and Technology, 291 Daehak-ro, Yuseong-gu, Daejeon, 34141, Korea.2Department of Software Convergence, College of Interdisciplinary Studies for Emerging Industries, Seoul Women's University, 621 Hwarang-ro, Nowon-gu, Seoul, 01797, Korea.3Department of Radiology, Severance Hospital, Research Institute of Radiological Science, Yonsei University College of Medicine, 50-1 Yonsei-ro, Seodaemun-gu, Seoul, 03722, Korea.  

  • 키워드
    clear cell-type renal cell carcinoma (ccRCC); computer-aided diagnosis (CAD); contrast-enhanced multidetector computed tomography imaging (CE MDCT); fat-poor angiomyolipoma (fp-AML); quantitative image feature classification
  • 편집위원

    최근 들어 인공지능과 관련한 논문들이 많이 나오고 있다. 이 논문도 의료영상에서 feature classification과 관련한 것으로, 64개의 feature를 선정하고 feature selection 방법들과 classifier들의 어떤 조합이 테스트 결과가 좋은지 분석한 것이다. 가장 좋은 조합에서 대략 72%의 정확도로 당장 임상에 활용하기에 높은 편은 아니지만 특정 세포(renal cell)에서 특정한 상황(malignant와 benign)을 classification할 때 최적의 방법을 찾아보았다는 점에서 연구의 결과 자체도 의미가 있을 뿐만 아니라 이러한 방법을 다른 세포와 다른 상황에도 응용하거나 서로 비교할 수 도 있다는 점에서 흥미로왔다. 앞으로 국내 방사선의학 분야에서도 인공지능을 활용한 연구가 활발하게 이루어지고 나아가 임상에 활용할 수 있는 성과가 나왔으면 하는 바램이다.

    2017-08-03 16:47:52

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